CIYA

586 posts

CIYA

CIYA

@CIYALabs

1M tokens in 200ms at 91.53% optimization. CIYA is the deterministic storage & logic layer for sovereign AI. Built for on-prem, air-gapped and edge deployments.

Orlando, FL Katılım Ocak 2026
46 Takip Edilen52 Takipçiler
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CIYA
CIYA@CIYALabs·
What happens to your enterprise AI stack if a frontier model provider goes dark tomorrow? Most companies are trapped in a cloud-dependent choke hold. We built an alternative. CIYA v0.02 benchmarks are live. A full-state token resolution of 1,000,000 tokens in 200ms for on-prem deployments. In an air-gapped 3g environment, we hit a full-state resolution of 20s. CIYA's core engine doesn't rely on cloud LLMs, or LLMs at all. They are simply an option CIYA can utilize if your business logic demands it. Every major API provider could go dark tomorrow, and CIYA still shines. Your prompts and logic would remain fully functional, Through CIYA, Prompt Immortality is 100% possible! Use an LLM to capture your necessary functionality through CIYA once, then cut the cord on inflated model subscriptions for good. No vendor lock-in. No on-going cloud compute tax. We're here when you're ready, planet earth.
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Evan Buhler 🎸
Evan Buhler 🎸@evanbuhler·
Current life goal is to build an enduring venture fund @TalokCapital, which for me means finding, funding and supporting the world’s strongest tech entrepreneurs. Open to chatting with anyone about this. Will be in Miami next. If you know good talent or capital there, lmk :)
Evan Buhler 🎸@evanbuhler

I’m writing this as my family faces a health crisis on the eastern front which is causing me to reflect on what matters most over the next few months and how to prioritize: time with fam, cash flow, networking, etc. I guess life forces you to introspect on this periodically.

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CIYA
CIYA@CIYALabs·
@darrenmarble We'd make for compelling comedy if you know someone! 🤠
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Hank Couture
Hank Couture@HankCouture·
July applications are in for @_LeapYear_ 2026. We are reviewing apps now. If you applied, we are humbled by your interest + appreciate your patience as we review. Fun fact - this cycle, we passed 5,000+ builders lifetime applying for LeapYear.
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CIYA
CIYA@CIYALabs·
@arian_ghashghai Open AI and the like's business model depends on being as 'first' as humanly possible. once that lead dries up its game over. But this was always the case though
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arian ghashghai
arian ghashghai@arian_ghashghai·
> “Open-weight models are inherently decelerationist” Anyone that’s ever built anything knows this is false, but this statement should serve as a stark reminder that what’s best for tech (builders and science) and what’s best for OpenAI (i.e. labs that charge for model access) are inherently juxtaposed, competitive and incompatible versions of a ubiquitous AI future. imo this has roughly 3 potential outcomes: 1) OpenAI and co win, oligopoly on AI established as a result of regulatory capture, independent AI science is outlawed (or regulated to an extent that anyone outside the oligopoly is de facto excluded) 2) OpenAI and co are forced to switch business models (as token as a business model don’t work) and the new business models compliment new science 3) OpenAI and co die (due to insolvency) prior to achieving regulatory capture, science prevails
Dean W. Ball@deanwball

Some observations on Kimi: 1. It's a very good model! I don't think its performance can be explained away by distillation or anything like that. In agentic coding sessions, it seems pretty much on par with the best public models of Q1 2026. In my fairly limited use, it also seemed very token hungry. It's not obvious to me that this model is actually that cheap to run. 2. I am personally surprised the Chinese state continues to allow the open sourcing of models this good, given potential risks. To be clear, I *myself* might be fine with models presenting this level of marginal risk being open weight, but I am surprised that China is fine with it. I suspect the reason they are is 75% explained by strategic blindness/lack of AGI-pilledness (the CCP is very Yann Lecun-y in its views of AI). The other 25% or so is their lack of compute for customer inference (making China's open-weight strategy an unintended byproduct of US export controls) and the normal Chinese strategy of aggressive exports. For the companies, as opposed to the government, the decision to open source is partially ideological and partially because they are behind, and they know that very few people would pay for sub-frontier models from China. 3. Open-weight models are inherently decelerationist, and I'm continually surprised to see the so-called "accelerationists" so excited about open-weight models. I suspect the reason they are is that they know open-weight models are effectively ungovernable, and they simply like the overall cloak of ungovernability open-weight models create over the whole of AI. It's not a bad strategy; it reminds me of James Scott's recounting of the hill people in "the art of not being governed." Still, in the end, open-weight models deter further AI capex. 4. One probable outcome of an open-weight-model-dominant world is full AI communism, which is precisely what China proposes: rather than a market product, AI is a "public good" which will ultimately be provided by the state as a kind of "digital public infrastructure." This future strikes me as a dystopian hellscape, but I've never met an open-weight models advocate who doesn't ultimately concede this is where things end. You'd be surprised how many 'accelerationists' lobbied me, while I was in government, to support an eleven or twelve-figure federally funded data center so that startups could train models at a subsidy and then give them away for free. There was no other way for AI to progress, they said. Perhaps this is the logical end state of things. Nonetheless, I find myself surprised to see supposed accelerationists excited about such an outcome. I think many of them just don't know what they're doing. Many accelerationists do not view the creation and serving of frontier models as a legitimate business. 5. I would guess that the Trump Administration will at some point realize that their best strategy here would be to create large amounts of regulatory risk around the use of open-weight Chinese models. You don't need to "ban open source" (one of the dumber motifs of AI policy discussion). You just need to direct every agency to issue soft law that creates FUD. "A Federal Reserve Advisory Bulletin found that there may be backdoors in Chinese AI models." It needn't be that well justified. You just create enough regulatory risk that every regulated enterprise backs off. You probably don't want to create so much regulatory risk that you scare off the hyperscalers from serving Chinese models; this will just drive startups to sketchier providers. There's a happy middle ground here. I'd assume they will do some version of this. 6. It's probably true that open-weight models of this capability make the world a bit more dangerous, but not so much more that you'll really notice. At some point the models will be capable enough that you will notice. "A nonliving, invisible, dangerous, and infinitely self-replicating agent escaped from a Chinese lab," you say? Color me shocked.

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Kimi.ai
Kimi.ai@Kimi_Moonshot·
Kimi K3 has received far more love than we expected, and our GPUs are feeling it. Over the past 48 hours, demand has pushed close to the limits of our current capacity. To protect the experience of existing subscribers, we're temporarily pausing new subscriptions and prioritizing compute for current members. Existing subscribed users are not affected. We're adding capacity as fast as we can and will reopen new subscription spots in batches. Going forward, we'll also split membership into two more focused plans: Kimi Membership for Kimi Web, App, and Work; and Kimi Code Membership for coding workflows. This will help us match compute more precisely and keep the experience stable. Thank you for your patience and understanding!
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Ram Ahluwalia CFA, Lumida
Ram Ahluwalia CFA, Lumida@ramahluwalia·
@CIYALabs It's a hard, hard business. They need LPs to go along for the ride. They need logos to raise money. They need markers of success along 8 to 10 year fund life, even if they are not DPIs.
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Ram Ahluwalia CFA, Lumida
Ram Ahluwalia CFA, Lumida@ramahluwalia·
VCs at the individual level are smart. VCs at the aggregate level are dumb. Venture capital at its core is trend following: robotics, AI, defense tech, etc. Except the holdings are illiquid. And, VCs are forced to crowd into the hottest themes and logos. That helps them raise funds and show a marker of success - even if zero distributions take place. Hottest does not mean ‘priced well’ or ‘sustainable competitive advantage’. Hottest means ‘easy to raise money at higher valuation’. Example: Kalshi and Polymarket - great seed bets and huge winners. Easy to raise money for today. Expected value investing today? Probably negative. Same story for most IPOs. That’s why they go public: the names are marketable. The crowding dynamic in venture pushes up valuations, and hurts overall industry returns. For the same reason, a contrarian VC is extraordinarily difficult to find. The reason why CoreWeave worked out so well. All the VCs passed on it (except @nic_carter who did it ad an angel.) So, Coreweave was priced as an ‘east coast’ deal and cheap years before the IPO. Coreweave was not crowded. And it was linked to an emerging trend not fully priced by markets: AI infrastructure. Venture is an incredibly tough business. If want to raise money from LPs, you need to talk about big crowded and expensive trends. If you talk about something non-consensus conceptually, LPs take interest. But, if you make it ‘concrete’ LPs that are trend chasers themselves will lose interest. LPs want the hype, and VCs need the hype to raise dollars. Such is the circular curse of venture capital.
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CIYA
CIYA@CIYALabs·
Distillation or not, CIYA doesnt live within those boundaries. While llms are arguing over this, we can sit back, provide the benefits of those LLMs directly without ever having to get in the middle of the squabble. Deterministic AI FTW baby!
Steven Sinofsky@stevesi

There's really no sound argument that distillation is illegal. It might be a ToS violation but suing your customers is never good. Corps will distill w/private data. Arguing output is copyright is thin ice for models that are already on unproven/unstable US copyright ground.

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CIYA
CIYA@CIYALabs·
Can someone ELIA5 why they think programming is a low intelligence task? I'm ready to hear your opinion in the comments.
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CIYA
CIYA@CIYALabs·
@edinsoncode We’ve noticed that attracting users is semi-difficult, but by speaking + engaging with users on X that number has started to increase week by week.
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Edinson Carranza
Edinson Carranza@edinsoncode·
Unpopular opinion: Getting users is 100x harder than building. Change my mind.
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CIYA
CIYA@CIYALabs·
@ItsElanaGold And we’re over here with our 300 dollar GBR changing the industry undetected. It’s a superpower, not a flaw 😎
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Elana
Elana@ItsElanaGold·
$412.7B deployed by US VCs in the first half of 2026. That's more than ALL of 2025 ($339B). But deal count is at a decade low. Record capital. Fewer companies getting it. The money is concentrating into massive AI megarounds.
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CIYA
CIYA@CIYALabs·
@samhogan Determinism is still king, so much so that you can reap the benefits of LLMs without ever having to rely on probabilistic black boxes for business logic. I’m sure I don’t have to explain this to you though, you probably get it.
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Sam Hogan 🇺🇸
Sam Hogan 🇺🇸@samhogan·
The diffusion of deterministic software, ie code, took ~50 years to reach full saturation. For the first 20 years, most companies bought software from vendors like Microsoft and Sun Microsystems. In the 1990s, Linux and the OSS came along and disrupted this by helping to create a whole new class of people who could easily create software. Suddenly businesses were hiring their own software developers and building tools in house using open source components. I expect we’re going to speedrun this adoption curve for non-deterministic software, ie models, in just five years. Companies are going to build their own ML teams who use open source models and libraries to create and manage their own AI stack rather than relying on a proprietary provider. The large vendors like OpenAI and Anthropic will remain relevant for some time, but will ultimately be small compared to the ecosystem as a whole.
Aravind Srinivas@AravSrinivas

At its peak, Sun Microsystems was valued at 205B (394B if inflation adjusted). Sold software in enterprise servers. Got disrupted by Linux, x86, and commodity hardware. Ended up selling to Oracle for 7.4B, losing 96% of its value. Open source models running on local hardware can have a similar impact given what’s going on.

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CIYA
CIYA@CIYALabs·
@dara_venture This. I’ve been writing code for 20 years because I enjoy it.
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Dara
Dara@dara_venture·
9/10 "burnout" as a startup founder is caused by "pretending"
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CIYA
CIYA@CIYALabs·
@Lukealexxander @theandreboso At the moment, I do not. CIYA 100% my focus for now. But if the time comes when I do, I’ll let you know!
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Andrea Bosoni
Andrea Bosoni@theandreboso·
It’s sad seeing founders like Michael struggle to land a job when they need one. Companies hire for specialists and people like him don’t fit in a box. But someone who’s spent 15 years building and shipping is exactly who you want when things get hard. Startups say they want owners then screen out everyone who’s actually owned something.
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CIYA
CIYA@CIYALabs·
@stevenxiao_ DamonTheGreek is your next model don’t lie
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steven xiao
steven xiao@stevenxiao_·
guy watching The Odyssey for startup name ideas
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CIYA
CIYA@CIYALabs·
@darrenmarble This. It’s hard a hard pill to swallow for some people who aren’t experienced with rejection. Lucking I’ve been rejected enough in life to know how to brush it off. But really, ghosting is a low quality move
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Darren Marble
Darren Marble@darrenmarble·
An investor who ghosts you does not deserve your attention in the future. Ever.
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CIYA
CIYA@CIYALabs·
@KgabungThabang yep! 3400 is roughly 22 applications a week. Obviously thats +/- depending on the week and the amount of new jobs posted.
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CIYA
CIYA@CIYALabs·
@tomfgoodwin you know you've made it when you're hired by a company that built an app with drupal, spliced to a wordpress build to connect said nightmare to their 16 sql databases. #amirite
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Tom Goodwin
Tom Goodwin@tomfgoodwin·
I don’t think many tech folk understand how to wildly inefficient most companies are . It’s not by design but it’s also not a logical fix
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CIYA
CIYA@CIYALabs·
@ifoundanna not a shoebox more like one of those 2 dollar home depot moving boxes
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Anna Gotskind
Anna Gotskind@ifoundanna·
i moved to SF a couple months ago and have hosted more events here than my 2 years in ny. def helps having an apt that isn't the size of a shoebox.
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